Authors' Affiliations: Departments of Cancer Imaging and Metabolism, Molecular Oncology, Bone Marrow Transplantation, and Department of Hematologic Malignancies, H. Lee Moffitt Cancer Center and Research Institute, Tampa, Florida.
Cancer Res. 2014 Jan 1;74(1):56-67. doi: 10.1158/0008-5472.CAN-13-2397. Epub 2013 Dec 5.
Accurate preclinical predictions of the clinical efficacy of experimental cancer drugs are highly desired but often haphazard. Such predictions might be improved by incorporating elements of the tumor microenvironment in preclinical models by providing a more physiological setting. In generating improved xenograft models, it is generally accepted that the use of primary tumors from patients are preferable to clonal tumor cell lines. Here we describe an interdisciplinary platform to study drug response in multiple myeloma, an incurable cancer of the bone marrow. This platform uses microfluidic technology to minimize the number of cells per experiment, while incorporating three-dimensional extracellular matrix and mesenchymal cells derived from the tumor microenvironment. We used sequential imaging and a novel digital imaging analysis algorithm to quantify changes in cell viability. Computational models were used to convert experimental data into dose-exposure-response "surfaces," which offered predictive utility. Using this platform, we predicted chemosensitivity to bortezomib and melphalan, two clinical multiple myeloma treatments, in three multiple myeloma cell lines and seven patient-derived primary multiple myeloma cell populations. We also demonstrated how this system could be used to investigate environment-mediated drug resistance and drug combinations that target it. This interdisciplinary preclinical assay is capable of generating quantitative data that can be used in computational models of clinical response, demonstrating its utility as a tool to contribute to personalized oncology.
准确预测实验性癌症药物的临床疗效是非常需要的,但往往是偶然的。通过在临床前模型中纳入肿瘤微环境的元素,为其提供更接近生理的环境,这样的预测可能会得到改善。在生成改进的异种移植模型时,人们普遍认为使用来自患者的原发性肿瘤比克隆肿瘤细胞系更可取。在这里,我们描述了一个用于研究多发性骨髓瘤(一种骨髓无法治愈的癌症)药物反应的跨学科平台。该平台使用微流控技术将每个实验所需的细胞数量最小化,同时整合了源自肿瘤微环境的三维细胞外基质和间充质细胞。我们使用连续成像和一种新颖的数字成像分析算法来量化细胞活力的变化。计算模型被用于将实验数据转化为剂量-暴露-反应“曲面”,从而提供预测能力。使用该平台,我们预测了硼替佐米和马法兰两种临床多发性骨髓瘤治疗药物在三种多发性骨髓瘤细胞系和七种患者来源的原发性多发性骨髓瘤细胞群体中的化疗敏感性。我们还展示了如何使用该系统来研究环境介导的耐药性以及针对其的药物组合。这种跨学科的临床前检测能够生成可用于临床反应计算模型的定量数据,证明了其作为一种有助于肿瘤个体化治疗的工具的实用性。